Literature DB >> 26340796

Occupation and Risk of Non-Hodgkin Lymphoma and Its Subtypes: A Pooled Analysis from the InterLymph Consortium.

Andrea 't Mannetje1, Anneclaire J De Roos, Paolo Boffetta, Roel Vermeulen, Geza Benke, Lin Fritschi, Paul Brennan, Lenka Foretova, Marc Maynadié, Nikolaus Becker, Alexandra Nieters, Anthony Staines, Marcello Campagna, Brian Chiu, Jacqueline Clavel, Silvia de Sanjose, Patricia Hartge, Elizabeth A Holly, Paige Bracci, Martha S Linet, Alain Monnereau, Laurent Orsi, Mark P Purdue, Nathaniel Rothman, Qing Lan, Eleanor Kane, Adele Seniori Costantini, Lucia Miligi, John J Spinelli, Tongzhang Zheng, Pierluigi Cocco, Anne Kricker.   

Abstract

BACKGROUND: Various occupations have been associated with an elevated risk of non-Hodgkin lymphoma (NHL), but results have been inconsistent across studies.
OBJECTIVES: We investigated occupational risk of NHL and of four common NHL subtypes with particular focus on occupations of a priori interest.
METHODS: We conducted a pooled analysis of 10,046 cases and 12,025 controls from 10 NHL studies participating in the InterLymph Consortium. We harmonized the occupational coding using the 1968 International Standard Classification of Occupations (ISCO-1968) and grouped occupations previously associated with NHL into 25 a priori groups. Odds ratios (ORs) adjusted for center, age, and sex were determined for NHL overall and for the following four subtypes: diffuse large B-cell lymphoma (DLBCL), follicular lymphoma (FL), chronic lymphocytic leukemia/small lymphocytic lymphoma (CLL/SLL), and peripheral T-cell lymphoma (PTCL).
RESULTS: We confirmed previously reported positive associations between NHL and farming occupations [field crop/vegetable farm workers OR = 1.26; 95% confidence interval (CI): 1.05, 1.51; general farm workers OR = 1.19; 95% CI: 1.03, 1.37]; we also confirmed associations of NHL with specific occupations such as women's hairdressers (OR = 1.34; 95% CI: 1.02, 1.74), charworkers/cleaners (OR = 1.17; 95% CI: 1.01, 1.36), spray-painters (OR = 2.07; 95% CI: 1.30, 3.29), electrical wiremen (OR = 1.24; 95% CI: 1.00, 1.54), and carpenters (OR = 1.42; 95% CI: 1.04, 1.93). We observed subtype-specific associations for DLBCL and CLL/SLL in women's hairdressers and for DLBCL and PTCL in textile workers.
CONCLUSIONS: Our pooled analysis of 10 international studies adds to evidence suggesting that farming, hairdressing, and textile industry-related exposures may contribute to NHL risk. Associations with women's hairdresser and textile occupations may be specific for certain NHL subtypes. CITATION: 't Mannetje A, De Roos AJ, Boffetta P, Vermeulen R, Benke G, Fritschi L, Brennan P, Foretova L, Maynadié M, Becker N, Nieters A, Staines A, Campagna M, Chiu B, Clavel J, de Sanjose S, Hartge P, Holly EA, Bracci P, Linet MS, Monnereau A, Orsi L, Purdue MP, Rothman N, Lan Q, Kane E, Seniori Costantini A, Miligi L, Spinelli JJ, Zheng T, Cocco P, Kricker A. 2016. Occupation and risk of non-Hodgkin lymphoma and its subtypes: a pooled analysis from the InterLymph Consortium. Environ Health Perspect 124:396-405; http://dx.doi.org/10.1289/ehp.1409294.

Entities:  

Mesh:

Year:  2015        PMID: 26340796      PMCID: PMC4829988          DOI: 10.1289/ehp.1409294

Source DB:  PubMed          Journal:  Environ Health Perspect        ISSN: 0091-6765            Impact factor:   9.031


Introduction

Non-Hodgkin lymphoma (NHL) comprises a group of malignancies that are common in industrialized countries. Studies of occupational risk factors have proven valuable for generating hypotheses regarding the possible environmental causes of NHL, and over the past four decades, these studies have produced a number of strong leads (Schottenfeld and Fraumeni 2006). In particular, occupations involving exposure to pesticides and solvents have been repeatedly associated with NHL. Other occupational risk factors have been hypothesized; these include infectious agents, sunlight, organic dusts (including flour dust, textile dust, and wood dust), mineral dusts, metals, and ionizing radiation. Nevertheless, even repeatedly observed associations (e.g., employment as farmer) have not been entirely consistent across studies. A well-defined set of occupations and potential exposures relevant to NHL etiology has yet to be established. Among the potential reasons for the lack of consistency in previous findings is the idea that individual case–control studies lack the power to provide stable estimates of relative risk for less-common occupations and are susceptible to chance findings because of the large number of occupations evaluated. Studies differ somewhat in how occupational details are recorded, coded, analyzed, and reported, making comparison difficult, and they may not be comparable in terms of the NHL subtypes included and tumor classifications used. Finally, there may be true differences in risk associated with the same occupation across different study regions owing to local differences in population characteristics, exposure patterns, and NHL subtype distribution. To determine the extent of agreement with previous findings in the large pooled dataset of InterLymph consortium studies, we conducted an analysis of occupations in relation to NHL using a uniform classification of occupations and NHL pathology. Our aims were a) to confirm the relationship of occupations of a priori interest to NHL and its subtypes, and b) to estimate the contribution of specific occupations of a priori interest to the incidence of NHL and its subtypes.

Methods

Study population. Included in our analyses were 10 NHL case–control studies that participate in the InterLymph consortium, had collected information on occupation from cases and controls, and were willing to contribute their data to the pooled analysis (see Table 1 for the acronyms used to refer to each study, details about study designs and locations, and citations to general references for each study). The InterLymph consortium of international investigators undertakes research projects to pool data across studies that explore the etiology of lymphoid malignancies. The set of harmonized core variables, including age, sex, study center (region), smoking status, and NHL subtype, was directly obtained from the InterLymph data coordinating center. Variables on occupational history were obtained from the principal investigators of each participating study. We applied the lymphoma classification scheme for epidemiologic research developed by InterLymph investigators (Morton et al. 2007) to all participating InterLymph studies. All cases classified as “lymphoid neoplasms” according to this classification, except multiple myeloma and Hodgkin lymphoma, were included in this analysis.
Table 1

Description of the study population.

Study acronymCountry (study center)Year of diagnosisAge range (years)Cases (n)Controls (n)Source of controlsReferencea
BCbCanada (Vancouver; Victoria)2000–200420–80821848Random selection from client registry of the Ministry of Health; frequency matched by age, sex, and regionSpinelli et al. 2007
NebraskabUSA (Nebraska)1999–200220–75386533Random digit dialing; frequency matched by age and sexChiu et al. 2007
NCI-SEERUSA (Detroit, MI; Iowa; Los Angeles, CA; Seattle, WA)1998–200120–74 1,3211,057< 65 years, random digit dialing; ≥ 65 years, random selection from Centers for Medicare and Medicaid Services; stratified by study area, age, sex, and raceDe Roos et al. 2005
UCSF1USA (San Francisco, CA)1988–199521–741,2602,094Random digit dialing; frequency matched by age, sex, and county of residenceTranah et al. 2009
YaleUSA (Connecticut)1995–200123–85600717Women only; < 65 years, random digit dialing; ≥ 65 years, random selection from Centers for Medicare and Medicaid Services; frequency matched ± 5 years of age Zhang et al. 2004
UKUK (Lancashire/South Lakeland; Yorkshire; parts of southwest England)1998–200318–698271,129Individually matched by age, sex, and region of residence from general practice listsWillett et al. 2004
EpilymphSpain; France; Germany; Italy; Ireland; Czech Republic1998–200418–891,6602,460Spain/France/Ireland/Czech Republic: hospital controls matched by age (± 5 years), sex, and study region. Germany/Italy: random selection from population register; individually matched by sex, age, and study regionCocco et al. 2010
ItalyItaly (12 areas)1991–199319–791,9101,771Random sample of the population resident in the area; stratified by 5-year age groups and sex. Fortli/Ragusa/Firenze: computerized demographics files. Other areas: National Health Service filesSeniori Costantini et al. 2001
ENGELAFrance (Bordeaux; Brest; Caen; Nantes; Lille; Toulouse)2000–200420–75567722Hospital controls, mainly in orthopedic and rheumatological departments and residing in the hospital’s catchment area; individually matched with the cases by center, age (± 3 years), and sexOrsi et al. 2009
NSWAustralia (New South Wales; Australian Capital Territory)2000–200120–74694694Random selection from electoral register; frequency matched by age, sex, and state or territoryFritschi et al. 2005
Total10,04612,025
Men5,2656,228
Women4,7815,797
Abbreviations: BC, British Columbia; ENGELA, l‘Etude des Facteurs Environmentaux et Genétique des Lymphomes de l’Adulte; NCI-SEER, National Cancer Institute–Surveillance, Epidemiology, and End Results Program; NSW, New South Wales; UCSF, University of California, San Francisco; UK, United Kingdom. aOne reference is given for each study, usually the publication with study results for occupation or occupational exposures. bOnly the longest-held occupation was recorded for BC and Nebraska. All other studies recorded a complete occupational history.
Description of the study population. Occupational history. For the purpose of our pooled analyses, the data on occupation were classified into a standard internationally recognized occupational classification scheme, the International Standard Classification of Occupations 1968 (ISCO-68) [International Labour Office (ILO) 1981]. Depending on the original occupational classification used by the individual studies and on whether a full-text description of the occupation was available, the ISCO-68 code for each job recorded was determined by one of the following methods: a) a direct conversion of the original classification to the ISCO-68 classification (for the Yale and UCSF1 studies); b) a direct conversion from the original classification to the ISCO-68 classification followed by checking the correctness of each ISCO-68 code by comparing it with the free-text information on the occupation (for the NCI-SEER study); c) using the free-text information on the occupation to individually assign the ISCO-68 code (for the BC, Nebraska, UK, and NSW studies); or d) directly using the original occupational codes for those studies that used ISCO-68 as their original classification (for the Epilymph, Italy, and ENGELA studies). Eight of the 10 studies collected the full occupational history of cases and controls including all occupations held for at least 1 year and starting and ending years, and 2 studies (Nebraska, BC) recorded only the longest-held occupation. We defined occupational groups of a priori interest for NHL based on the peer-reviewed literature (Table 2). After discussions among three of the authors (A.’tM., A.J.D., R.V.), 25 occupational groups were constructed that included jobs associated with NHL in previous studies other than the 10 case–control studies included in our pooled analysis.
Table 2

Occupational groups of a priori interest.

Occupational group (study references reporting an increased lymphoid cancer risk)ISCO-68 codes included in the groupExposures hypothesized to be related to increased risk
Bakers/millers
(Alavanja et al. 1990; Blair et al. 1993)771, Grain millers and related workers; 776, bakers, pastry cooks and confectionery makers (excludes 77650, chocolate maker and 77660, confectionery maker)Flour dust, pesticides
Chemical workers
(Figgs et al. 1995; Franceschi et al. 1989; Ji and Hemminki 2006; Li et al. 1969; Neasham et al. 2011; Olin and Ahlbom 1980; Ott et al. 1989; Rinsky et al. 1988; Rosenman and Reilly 2004)011, Chemists; 02510, chemical engineer (general); 02590, other chemical engineers; 03610, chemical engineering technician (general); 70040, supervisor and general foreman, chemical and related materials processing; 74, chemical processers and related workers (excludes 745, petroleum-refining workers)Range of chemicals, benzidine, dyes
Cleaners
(Blair et al. 1993; Mester et al. 2006; ‘t Mannetje et al. 2008)55, Building caretakers, charworkers, cleaners and related workers; 95975, building exterior cleanerCleaning products
Drivers
(Band et al. 2004; Cano and Pollán 2001; Holly and Lele 1997; Linet et al. 1993; ‘t Mannetje et al. 2008)974, Earth-moving and related machinery operators (excludes 97470, concrete-mixer operator and 97475, concrete-mixing-plant operator); 979, material handling equipment operators n.e.c.a; 983, railway engine drivers and firemen; 985, motor-vehicle driversEngine exhausts, solvents
Dry-cleaners & laundry
(Blair et al. 1993; Cano and Pollán 2001; Ji and Hemminki 2006; Lynge et al. 2006; Schenk et al. 2009)56, Launderers, dry-cleaners and pressersSolvents (e.g., tetrachloroethylene)
Electrical & electronics workers
(Band et al. 2004; Figgs et al. 1995; Linet et al. 1993; Mester et al. 2006; Villeneuve et al. 2000)023, Electrical and electronics engineers; 034, electrical and electronics engineering technicians; 70055, supervisor and general foreman, manufacturing and installation of electrical and electronic equipment; 85, electrical fitters and related electrical and electronics workersElectromagnetic fields (EMF), solvents, polychlorinated biphenyls (PCBs)
Engine mechanics
(Blair et al. 1998; Dryver et al. 2004; Figgs et al. 1995; Hunting et al. 1995; Neasham et al. 2011; Zheng et al. 2002)03520, Mechanical engineering technician (motors and engines); 843, motor-vehicle mechanics; 844, aircraft engine mechanicsSolvents (in particular, gasoline containing benzene)
Farmers
Meta-analyses: (Blair et al. 1992; Keller-Byrne et al. 1995, 1997; Khuder et al. 1998)60, Farm managers and supervisors; 61, farmers; 62, agricultural and animal husbandry workersPesticides, infectious agents from farm animals, engine exhausts, solvents, paints, welding fumes
Farmers–animal61240, Livestock farmer; 61250, dairy farmer; 61260, poultry farmer; 624, livestock workers; 625, dairy farm workers; 626, poultry farm workers
Farmers–crop61220, Field crop farmer; 61230, orchard, vineyard, and related tree and shrub crop farmer; 61270, horticultural farmer; 622, field crop and vegetable farm workers; 623, orchard, vineyard, and related tree and shrub crop workers; 627, nursery workers and gardeners; 62940, tree tapper (except rubber)
Farmers–mixed/unspecified60020, Farm manager; 60030, farm supervisor; 611, general farmers; 61290, other specialized farmers; 621, general farm workers; 628, farm machinery operators; 62920, apiary worker; 62930, sericulture worker; 62950, irrigator; 62960, groundsman; 62990, other agricultural and animal husbandry workers
Fire fighters
(Band et al. 2004; Figgs et al. 1995; Ma et al. 1998; Sama et al. 1990)581, Fire fightersCombustion products, benzene, dioxins, chemical releases
Forestry workers
(Band et al. 2004; Blair et al. 1993; Reif et al. 1989; Woods et al. 1987; Zheng et al. 2002)63, Forestry workersPesticides (herbicides), engine exhausts
Hairdressers
(Blair et al. 1993; Boffetta et al. 1994; Miligi et al. 1999; Persson et al. 1989; Seniori Costantini et al. 1998)57, Hairdressers, barbers, beauticians, and related workersHair dyes, formaldehyde, solvents, ammonia
Leather workers
(Fu et al. 1996; Ji and Hemminki 2006; Linet et al. 1993; Mester et al. 2006; Neasham et al. 2011; Schenk et al. 2009)76, Tanners, fellmongers, and pelt dressers; 79460, leather garment cutter; 79480, leather glove cutter; 79530, leather garment hand sewer; 80, shoemakers and leather goods makersSolvents, tannins, formaldehyde, chromium
Meat workers
(McLean et al. 2004; Metayer et al. 1998; Neasham et al. 2011; Pearce et al. 1987; Tatham et al. 1997)773, Butchers and meat preparers; 77460, meat and fish smokerInfectious agents
Medical workers
(Eriksson et al. 1992; Figgs et al. 1995; Ji and Hemminki 2006; Lahti et al. 2008; Mester et al. 2006; Miligi et al. 1999; Schenk et al. 2009; Skov and Lynge 1991)05260, Medical pathologist; 05430, medical science technician; 06/07, medical, dental, veterinary, and related workersSolvents, antineoplastic drugs, night shifts, ionizing and nonionizing radiation, sterilizing agents, infectious agents
Metal processers
(Band et al. 2004; Cano and Pollán 2001; Mester et al. 2006)70030, Supervisor and general foreman, metal processing; 72, metal processersMetals, metal fumes
Metal workers
(Blair et al. 1993; Cano and Pollán 2001; Seniori Costantini et al. 2001; Skov and Lynge 1991; ‘t Mannetje et al. 2008; Zheng et al. 2002)70050, Supervisor and general foreman, manufacturing of machinery and metal products; 83, blacksmiths, toolmakers, and machine tool operators; 84135, metalworking machine-tool fitter-assembler; 873, sheet-metal workers; 874, structural metal preparers and erectorsSolvents; metals; cutting, lubricating, and mineral oils
Painters
(Band et al. 2004; Dryver et al. 2004; Persson and Fredrikson 1999; Scherr et al. 1992; Schumacher and Delzell 1988; ‘t Mannetje et al. 2008)16130, Painter, artist; 16160, painter restorer; 895, glass ceramics painters and decorators; 93, paintersPaint, solvents, paint strippers, dusts
Petroleum workers
(Franceschi et al. 1989; Thomas et al. 1982; Wong et al. 1986)02520, Chemical engineer (petroleum); 02740, petroleum and natural gas engineer; 03620, chemical engineering technician (petroleum); 03820, petroleum and natural gas extraction technician; 713, well drillers, borers, and related workers (excludes 71380, well driller and borer except oil and gas wells and 71390, other well drillers, borers, and related workers); 74350, crude oil treater (oilfield); 745, petroleum-refining workersSolvents, in particular benzene; gasoline
Printers
(Band et al. 2004; Blair et al. 1993; Boffetta and de Vocht 2007; Dryver et al. 2004; Rafnsson 2001; Zheng et al. 2002)03280, Lithographic artist; 84145, printing machinery fitter-assembler; 84940, printing machinery mechanic; 92, printers and related workersSolvents, inks, lead
Pulp & paper workers
(Band et al. 2004; Neasham et al. 2011)733, Paper pulp preparers; 734, paper makersDioxins
Teachers
(Baker et al. 1999; Bernstein et al. 2002; Boffetta and de Vocht 2007; Chia et al. 2012; Dryver et al. 2004; Figgs et al. 1995; Linet et al. 1993; Miligi et al. 1999; Zheng et al. 2002) 13, TeachersInfectious agents
Textile workers
(Blair et al. 1993; Cano and Pollán 2001; Delzell and Grufferman 1983; Fritschi and Siemiatycki 1996; Miligi et al. 1999; Schumacher and Delzell 1988)70070, Supervisor and general foreman, production of textiles and clothing manufacturing; 75, spinners, weavers, knitters, dyers, and related workers; 79, tailors, dressmakers, sewers, upholsterers, and related workers (excludes 79460, leather garment cutter and 79480, leather glove cutter); 84150, textile machinery fitter-assembler; 84945, textile machinery mechanicSolvents, dyes, electromagnetic fields, formaldehyde
Undertakers
(Blair et al. 1993; Hayes et al. 1990; Linos et al. 1990)592, Undertakers and embalmersFormaldehyde
Welders
(Band et al. 2004; Dryver et al. 2004; Fabbro-Peray et al. 2001; Persson et al. 1993; Seniori Costantini et al. 1998; Zheng et al. 2002)872, Welders and flame-cuttersSolvents, welding fumes, metal fumes, electromagnetic fields
Wood workers
(Band et al. 2004; Boffetta and de Vocht 2007; Eriksson et al. 1992; Gallagher et al. 1985; Linet et al. 1993; Mao et al. 2000; Miller et al. 1989; Persson and Fredrikson 1999; Persson et al. 1989)71160, Underground timberman; 731, wood treaters; 732, sawyers, plywood makers, and related wood-processing workers; 81, cabinetmakers and related woodworkers; 954, carpenters, joiners, and parquetry workersWood dust, solvents
aNot elsewhere classified.
Occupational groups of a priori interest. We also studied occupations within a group separately up to the detail of the 5-digit ISCO-68 code to explore whether an association was restricted to specific occupations within the group. For example, crop farmers were studied as a group, and specific occupations within this group such as orchard farmers and rice farmers were also studied separately. Statistical analyses. Unconditional logistic regression was used to calculate odds ratios (ORs) and 95% confidence intervals (CIs) for the association between NHL and occupations in the pooled data set in models adjusted for age, sex, and study center. For each a priori occupational group and individual ISCO-68 occupation defined by a 1-digit, 2-digit, 3-digit, and 5-digit code, a dichotomous variable was created for ever having worked in that occupation. Duration of employment was coded as < 1 year, 1–10 years, and > 10 years in the occupation. Smoking status (never/former/current) was considered as a potential confounder, but adjusting for smoking made no substantial difference to the relative risk estimates (data not shown); consequently, smoking was not included as a covariate. Analyses were performed for all NHL combined (excluding Hodgkin lymphoma and multiple myeloma) and separately for each of four major NHL subtypes [diffuse large B-cell lymphoma (DLBCL), follicular lymphoma (FL), chronic lymphocytic leukemia/small lymphocytic lymphoma (CLL/SLL), and peripheral T-cell lymphoma (PTCL)]; the same set of controls that was used for all NHL combined was used for each subtype. Two studies did not include CLL/SLL (UCSF1; UK) and were excluded from all CLL/SLL–specific analyses. All analyses were repeated stratified by sex. All statistical tests were two-sided with a significance level of 0.05. The Nebraska and BC studies included longest-held occupation only and were excluded from analyses of duration but were included in analyses of ever employment because their exclusion made little difference to the results. Polytomous regression was used to test whether differences in ORs by NHL subtype were statistically significant at p < 0.05; we tested for heterogeneity in effect across the four subtypes (DLBCL, FL, CLL/SLL, PTCL) based on data for ever employment in the occupation with both sexes combined. We tested for heterogeneity among studies using Cochran’s chi-squared test or the Q-test (Higgins and Thompson 2002); there was no evidence of significant heterogeneity (data not shown). To identify those associations with the largest potential impact on NHL incidence under the assumption of causality and in the absence of confounding, we calculated a population attributable fraction (AF) for occupations in which 1% or more of cases had ever worked and that were associated with an increased relative risk. The formula for AF calculation used the prevalence of ever employment in each occupation in controls as an estimate of population prevalence: prevalencecontrols × (OR – 1)/[1 + prevalencecontrols(OR – 1)] (Last et al. 1995). Criteria for presentation of results. The present analysis involved many specific occupations within the 25 a priori groups for which previous research demonstrated an association with an increased relative risk of NHL: 925 of > 2,000 relevant codes in the ISCO-68 classification were involved in this analysis. We set criteria to determine which associations to include in the results. We present results for ever employment and for > 10 years employment for all NHL and each of the four subtypes for each occupational group of a priori interest regardless of whether the estimates were statistically significant, with the exception of occupational groups with < 10 cases or < 10 controls. One occupational group in the analyses of all NHL (undertakers) and two groups in the analyses of the four subtypes (pulp & paper workers and petroleum workers) were excluded from the results because they had < 10 cases or < 10 controls. Additionally, we report associations with specific occupational titles included within the occupational groups of interest if we estimated a statistically significant OR (> 1.10 or < 0.90, for ever employment or > 10 years employment) based on men and women combined for all NHL or for any one of the four subtypes. ORs were also calculated for the 1,286 occupations that were not included in the 25 groups of a priori interest. These results are not presented here but are available upon request.

Results

The 10 case–control studies included 10,046 cases and 12,025 controls (Table 1). Of the cases, 50% were from Europe, 43% were from North America, and 7% were from Australia. The year of diagnosis ranged from 1988 to 2004, and 52.4% of cases were male. The mean ± standard deviation (SD) age at interview was 57.6 ± 12.8 years for cases and 55.4 ± 14.2 years for controls. The mean year of first employment (in the 8 studies with full occupational history) was 1959 (± 16 years; range, 1915–2003) for cases and 1961 (± 16 years; range, 1912–2002) for controls. Of the four subtypes selected for separate analyses, DLBCL formed the largest group with 3,061 cases (52.4% male), followed by FL (2,140 cases; 45.6% male), CLL/SLL (1,014 cases; 59.3% male), and PTCL (632 cases; 56.5% male). None of the 24 broad occupational groups of a priori interest (see Table 2) had a statistically significant positive association with NHL for ever employment (Table 3). However, one or more specific titles within 10 of these 24 groups were positively associated with NHL. There were positive associations with ever employment in cleaning occupations for “charworkers, cleaners and related” (OR = 1.17; 95% CI: 1.01, 1.36) and in electrical and electronic occupations for “electrical wiremen” (OR = 1.24; 95% CI: 1.00, 1.54); there were also positive associations with > 10 years employment for “electrical fitters & related electrical/electronics workers” and selected subgroups of these occupations. Among farming occupations, ever employment as “field crop and vegetable farm workers” (OR = 1.26; 95% CI: 1.05, 1.51) and as “general farm workers” (OR = 1.19; 95% CI: 1.03, 1.37) had a positive association with NHL. Employment of > 10 years as a forestry worker was also associated with NHL (OR = 2.25; 95% CI: 1.18, 4.32; 28 cases, 14 controls). Other positive associations were observed for NHL for ever employment as a “women’s hairdresser” (OR = 1.34; 95% CI: 1.02, 1.74), among painters as “spray-painters (except construction)” (OR = 2.07; 95% CI: 1.30, 3.29), among textile workers as “milliners and hatmakers” (OR = 2.46; 95% CI: 1.28, 4.74), and among woodworker occupations as “general carpenter” (OR = 1.42; 95% CI: 1.04, 1.93). Furthermore, > 10 years employment was positively associated with NHL among medical workers for “medical doctors” (OR = 1.87; 95% CI: 1.23, 2.85; 57 cases, 38 controls) and among metal workers for “machine-tool operators” (OR = 1.55; 95% CI: 1.11, 2.17; 84 cases; 63 controls). The occupational group of teachers was negatively associated with NHL (OR = 0.89; 95% CI: 0.81, 0.98), as were some of the specific occupations within the teachers group. Only “head teachers” had a positive association with NHL (OR = 2.16; 95% CI: 1.15, 4.06).
Table 3

Adjusted ORs (95% CIs) for NHL by occupational title in 24 occupational groups.

Occupational groupa and code: occupational titlebCases (n)Controls (n)All NHL (n = 10,046)
Ever employed> 10 years employment
Male and femaleMaleFemaleMale and femaleMaleFemale
ORc (95% CI)ORc (95% CI)ORc (95% CI)ORc (95% CI)ORc (95% CI)ORc (95% CI)
Bakers/millers1311580.95 (0.75, 1.20)1.00 (0.75, 1.35)0.83 (0.55, 1.24)0.90 (0.60, 1.33)0.95 (0.60, 1.49)
Chemical workers1271670.96 (0.76, 1.21)0.98 (0.76, 1.28)0.93 (0.53, 1.61)1.00 (0.68, 1.47)1.06 (0.70, 1.59)
Cleaners5345891.11 (0.98, 1.25)1.13 (0.92, 1.38)1.12 (0.95, 1.31)1.03 (0.84, 1.27)1.24 (0.85, 1.82)0.99 (0.77, 1.27)
552: Charworkers, cleaners and related3773951.17 (1.01, 1.36)1.26 (0.91, 1.75)1.15 (0.97, 1.36)1.05 (0.83, 1.34)1.37 (0.75, 2.49)1.02 (0.79, 1.33)
Drivers7879001.03 (0.93, 1.14)1.06 (0.95, 1.19)0.77 (0.53, 1.13)1.00 (0.85, 1.17)1.03 (0.87, 1.21)
983: Railway-engine drivers and firemen10270.45 (0.22, 0.94)0.45 (0.22, 0.94)NA
98590: Other motor-vehicle drivers56980.65 (0.46, 0.92)0.72 (0.50, 1.02)0.53 (0.29, 0.96)0.57 (0.31, 1.06)
Dry-cleaners971250.92 (0.70, 1.20)0.97 (0.56, 1.69)0.90 (0.66, 1.23)1.29 (0.74, 2.23)1.36 (0.72, 2.55)
Electrical & electronic6327491.05 (0.94, 1.18)1.08 (0.95, 1.23)1.01 (0.79, 1.29)1.12 (0.95, 1.32)1.09 (0.92, 1.30)1.47 (0.90, 2.41)
85: Electrical fitters and related electrical/electronics workers5255891.10 (0.98, 1.25)1.15 (0.99, 1.32)1.01 (0.78, 1.30)1.24 (1.02, 1.50)1.18 (0.96, 1.45)1.66 (0.99, 2.77)
853: Electrical and electronic equipment assemblers1211451.07 (0.84, 1.37)0.98 (0.61, 1.57)1.08 (0.81, 1.44)1.86 (1.10, 3.12)1.88 (1.05, 3.36)
85390: Other electrical and electronic equipment assemblers79911.15 (0.84, 1.57)1.25 (0.89, 1.76)2.18 (1.09, 4.38)NA2.28 (1.12, 4.64)
855: Electrical wiremen1771781.24 (1.00, 1.54)1.28 (1.03, 1.58)1.15 (0.83, 1.59)1.14 (0.82, 1.58)
85540: Vehicle electrician20102.58 (1.20, 5.55)2.60 (1.20, 5.59)NANA
Engine mechanics3033820.99 (0.84, 1.16)1.00 (0.85, 1.17)1.06 (0.77, 1.46)1.08 (0.79, 1.49)NA
Farmers–any1,3721,4331.03 (0.95, 1.13)1.02 (0.92, 1.14)1.03 (0.89, 1.19)1.06 (0.95, 1.19)1.04 (0.90, 1.21)1.06 (0.88-1.29)
Farmers–animal2643160.86 (0.72, 1.02)0.82 (0.66, 1.00)0.90 (0.65, 1.23)0.92 (0.72, 1.18)0.84 (0.62, 1.14)1.03 (0.66, 1.60)
Farmers–crop5825731.10 (0.97, 1.24)1.12 (0.96, 1.31)1.04 (0.84, 1.28)1.18 (1.00, 1.41)1.25 (1.00, 1.57)1.05 (0.79, 1.38)
622: Field crop and vegetable farm workers2762331.26 (1.05, 1.51)1.21 (0.95, 1.56)1.29 (0.98, 1.69)1.25 (0.96, 1.62)1.18 (0.83, 1.67)1.33 (0.90, 1.95)
62210: Field crop farm worker (general)1491181.38 (1.07, 1.77)1.32 (0.95, 1.83)1.42 (0.95, 2.12)1.29 (0.91, 1.82)1.23 (0.80, 1.90)1.34 (0.75, 2.40)
Farmers–mix and unspecified7166981.07 (0.95, 1.20)1.03 (0.90, 1.19)1.13 (0.92, 1.38)1.08 (0.93, 1.26)1.00 (0.82, 1.21)1.23 (0.94, 1.61)
621: General farm workers4374041.19 (1.03, 1.37)1.22 (1.02, 1.46)1.12 (0.87, 1.43)1.19 (0.95, 1.50)1.07 (0.79, 1.46)1.36 (0.95, 1.95)
Fire fighters49790.76 (0.53, 1.09)0.72 (0.49, 1.04)NA0.50 (0.27, 0.93)0.50 (0.27, 0.92)NA
Forestry workers66711.05 (0.75, 1.48)1.06 (0.74, 1.52)2.25 (1.18, 4.32)2.40 (1.23, 4.69)NA
Hairdressers1541581.21 (0.96, 1.52)0.89 (0.55, 1.44)1.28 (0.99, 1.65)1.27 (0.88, 1.82)1.20 (0.59, 2.45)1.26 (0.83, 1.92)
57020: Women’s hairdresser1151131.34 (1.02, 1.74)1.43 (1.08, 1.89)1.30 (0.84, 2.01)1.39 (0.88, 2.19)
Leather workers1321560.93 (0.73, 1.18)0.90 (0.64, 1.26)0.97 (0.70, 1.36)0.87 (0.58, 1.30)0.76 (0.44, 1.32)1.04 (0.57, 1.87)
Meat workers1021081.08 (0.81, 1.42)1.22 (0.89, 1.68)0.74 (0.41, 1.33)1.09 (0.70, 1.68)1.16 (0.70, 1.90)
Medical workers6818950.96 (0.86, 1.07)1.08 (0.88, 1.32)0.91 (0.80, 1.03)1.11 (0.96, 1.29)1.32 (0.99, 1.77)1.03 (0.87, 1.23)
061: Medical doctors77821.16 (0.84, 1.60)1.06 (0.73, 1.55)1.55 (0.83, 2.90)1.87 (1.23, 2.85)1.73 (1.07, 2.80)
062: Medical assistants581120.69 (0.50, 0.95)0.69 (0.39, 1.24)0.69 (0.46, 1.02)0.85 (0.38, 1.87)0.90 (0.38, 2.11)
Metal processers1331321.13 (0.88, 1.45)1.18 (0.90, 1.54)0.84 (0.41, 1.71)0.92 (0.60, 1.40)0.90 (0.58, 1.40)
Metal workers6167320.99 (0.88, 1.11)1.04 (0.91, 1.17)0.78 (0.57, 1.05)0.96 (0.80, 1.15)0.97 (0.80, 1.17)0.84 (0.47, 1.49)
83220: Tool and die maker34460.81 (0.52, 1.28)0.83 (0.52, 1.31)0.48 (0.23, 1.00)0.50 (0.24, 1.04)
834: Machine-tool operators2082281.09 (0.90, 1.33)1.13 (0.91, 1.41)0.93 (0.58, 1.49)1.55 (1.11, 2.17)1.65 (1.14, 2.37)
Painters2062211.15 (0.94, 1.39)1.17 (0.94, 1.44)1.06 (0.64, 1.78)1.19 (0.87, 1.63)1.21 (0.87, 1.68)0.99 (0.33, 2.99)
93930: Spray-painter (except construction)49292.07 (1.30, 3.29)2.46 (1.45, 4.15)NA
Petroleum workers12180.79 (0.38, 1.67)0.80 (0.38, 1.69)NANA
Printers1752300.95 (0.78, 1.17)0.96 (0.75, 1.24)0.95 (0.68, 1.33)1.13 (0.80, 1.60)1.11 (0.75, 1.63)1.24 (0.56, 2.73)
Pulp & paper workers16240.79 (0.42, 1.50)1.17 (0.55, 2.47)0.24 (0.05, 1.13)NA
Teachers8711,2010.89 (0.81, 0.98)0.88 (0.76, 1.03)0.88 (0.78, 0.99)0.90 (0.79, 1.03)0.94 (0.76, 1.17)0.87 (0.74, 1.04)
131: University and higher education teachers1892740.75 (0.61, 0.90)0.75 (0.57, 0.97)0.76 (0.57, 1.01)0.86 (0.65, 1.13)0.97 (0.67, 1.40)0.73 (0.48, 1.13)
132: Secondary education teachers2233440.82 (0.69, 0.98)0.91 (0.70, 1.18)0.75 (0.59, 0.95)0.81 (0.65, 1.03)1.03 (0.73, 1.45)0.67 (0.49, 0.92)
13940: Head teacher29152.16 (1.15, 4.06)2.19 (1.02, 4.71)
13990: Other teachers32560.63 (0.40, 0.98)0.49 (0.24, 1.02)0.73 (0.42, 1.28)
Textile workers7287731.07 (0.96, 1.20)1.07 (0.86, 1.33)1.08 (0.95, 1.24)1.16 (0.98, 1.36)1.05 (0.76, 1.43)1.23 (1.02, 1.50)
793: Milliners and hatmakers27142.46 (1.28, 4.74)
Welders1741981.03 (0.83, 1.27)1.01 (0.80, 1.27)1.06 (0.66, 1.71)1.01 (0.69, 1.48)0.91 (0.61, 1.36)
Wood workers3263521.04 (0.89, 1.22)1.04 (0.88, 1.23)0.97 (0.58, 1.63)1.06 (0.83, 1.36)1.00 (0.78, 1.29)
95410: Carpenter, general98741.42 (1.04, 1.93)1.40 (1.03, 1.92)NA1.19 (0.71, 2.00)1.18 (0.71, 1.99)NA
Abbreviations: —, < 10 cases or < 10 controls; NA, 0 cases or controls; aResults are not presented for the undertakers occupational group because they included < 10 cases or < 10 controls. bResults are presented for a specific occupational title within an occupational group if there was a statistically significantly increased or decreased risk of NHL associated with ever or > 10 years employment for men and women combined; results are excluded when there were < 10 cases or < 10 controls. cAdjusted for age, sex, and study center.
Adjusted ORs (95% CIs) for NHL by occupational title in 24 occupational groups. Table 4 presents ORs and 95% CIs for the four NHL subtypes for both sexes combined. DLBCL, the most common subtype, had positive associations with the occupational groups of hairdressers (OR = 1.47; 95% CI: 1.08, 2.00; 58 cases, 158 controls) and textile workers (OR = 1.19; 95% CI: 1.01, 1.41; 218 cases, 773 controls) as well as with specific occupations within these groups (women’s hairdresser, milliners and hatmakers, and sewers and embroiderers). Positive associations were also observed for specific occupations as “charworkers, cleaners and related workers” (OR = 1.27; 95% CI: 1.03, 1.58; 122 cases, 395 controls), “field crop & vegetable farm workers” (OR = 1.50; 95% CI: 1.15, 1.97; 79 cases, 233 controls) and its subgroup “field crop farm worker (general)” (OR = 1.48; 95% CI: 1.01, 2.17; 38 cases, 118 controls), “metal melters and reheaters” (OR = 2.31; 95% CI: 1.01, 5.26; 10 cases, 14 controls), and “special education teachers” (OR = 1.94; 95% CI: 1.01, 3.71; 14 cases, 24 controls). Forestry workers with > 10 years employment also had a positive association with DLBCL (OR = 3.04, 95% CI: 1.34, 6.90; 10 cases, 14 controls).
Table 4

Adjusted ORs (95% CIs) for each of four NHL subtypes by occupational title in 22 occupational groups.

Occupational groupa and code: occupationalb titleDLBCL (n = 3,061)FL (n = 2,140)CLL/SLL (n = 1,014)PTCL (n = 632)p-Valued
Ever employed> 10 years employmentEver employed> 10 years employmentEver employed> 10 years employmentEver employed> 10 years employment
ORc (95% CI)ORc (95% CI)ORc (95% CI)ORc (95% CI)ORc (95% CI)ORc (95% CI)ORc (95% CI)ORc (95% CI)
Bakers/millers1.00 (0.70, 1.43)0.92 (0.49, 1.73)0.54 (0.30, 0.99)0.89 (0.53, 1.48)1.15 (0.57, 2.31)1.53 (0.86, 2.73)0.07
Chemical workers0.85 (0.59, 1.22)1.07 (0.60, 1.89)1.34 (0.92, 1.97)1.72 (0.93, 3.17)0.52 (0.25, 1.09)0.10
Cleaners1.17 (0.98, 1.39)1.10 (0.81, 1.50)1.06 (0.85, 1.31)0.97 (0.66, 1.43)1.05 (0.77, 1.42)1.04 (0.67, 1.61)0.74 (0.47, 1.16)0.28
552 Charworkers, cleaners, and related workers1.27 (1.03, 1.58)1.18 (0.83, 1.67)1.19 (0.92, 1.53)1.15 (0.76, 1.75)1.14 (0.81, 1.62)1.11 (0.68, 1.80)0.67 (0.38, 1.18)0.19
Drivers1.00 (0.86, 1.17)1.00 (0.79, 1.26)1.05 (0.87, 1.27)1.03 (0.77, 1.39)1.02 (0.80, 1.31)0.85 (0.60, 1.21)0.96 (0.70, 1.32)0.84 (0.51, 1.37)0.96
Dry-cleaners1.07 (0.72, 1.59)0.92 (0.35, 2.44)0.73 (0.42, 1.26)1.21 (0.67, 2.21)0.41
Electrical & electronic0.99 (0.84, 1.17)1.03 (0.81, 1.32)1.10 (0.91, 1.34)1.06 (0.79, 1.44)1.12 (0.83, 1.50)1.27 (0.85, 1.90)1.04 (0.74, 1.46)1.39 (0.88, 2.19)0.85
851 Electrical fitters0.76 (0.47, 1.24)0.99 (0.50, 1.94)1.00 (0.58, 1.73)2.02 (1.03, 3.97)0.11
Engine mechanics1.12 (0.90, 1.39)1.40 (0.92, 2.14)0.99 (0.75, 1.31)0.80 (0.41, 1.56)0.89 (0.59, 1.36)0.70 (0.40, 1.24)0.36
Farmers–any1.04 (0.91, 1.18)0.92 (0.77, 1.11)0.99 (0.84, 1.17)1.07 (0.85, 1.35)1.17 (0.98, 1.40)1.16 (0.93, 1.45)0.97 (0.74, 1.27)0.96 (0.67, 1.38)0.41
Farmers–animal0.80 (0.61, 1.06)1.07 (0.74, 1.55)1.08 (0.79, 1.48)0.94 (0.55, 1.59)0.63 (0.42, 0.96)0.69 (0.39, 1.21)0.74 (0.43, 1.28)0.18
Farmers–crop1.19 (0.98, 1.43)1.11 (0.83, 1.48)1.07 (0.82, 1.38)1.26 (0.85, 1.87)1.11 (0.85, 1.43)1.32 (0.97, 1.79)1.09 (0.76, 1.57)1.21 (0.75, 1.96)0.88
622 Field crop and vegetable farm workers1.50 (1.15, 1.97)1.16 (0.76, 1.78)1.10 (0.73, 1.65)1.04 (0.53, 2.04)1.20 (0.85, 1.69)1.49 (0.98, 2.27)1.35 (0.82, 2.22)0.46
62210 Field crop farm worker (general)1.48 (1.01, 2.17)1.09 (0.60, 1.98)1.06 (0.57, 1.95)1.40 (0.91, 2.13)1.56 (0.93, 2.60)1.73 (0.95, 3.17)0.61
Farmers–mix and unspecified1.01 (0.84, 1.20)0.88 (0.68, 1.14)1.00 (0.79, 1.25)1.07 (0.79, 1.45)1.30 (1.06, 1.60)1.17 (0.88, 1.55)0.84 (0.57, 1.23)0.95 (0.57, 1.57)0.11
621 General farm workers1.13 (0.90, 1.42)1.01 (0.69, 1.49)1.16 (0.87, 1.56)0.91 (0.52, 1.59)1.44 (1.13, 1.84)1.38 (0.94, 2.03)1.14 (0.74, 1.78)1.27 (0.65, 2.47)0.32
Fire fighters0.62 (0.35, 1.13)0.78 (0.41, 1.49)0.86
Forestry workers1.10 (0.66, 1.83)3.04 (1.34, 6.90)1.24 (0.64, 2.43)0.51
Hairdressers1.47 (1.08, 2.00)1.51 (0.92, 2.49)0.92 (0.60, 1.39)1.79 (1.06, 3.03)2.09 (1.01, 4.34)0.06
57020 Women’s hairdresser1.60 (1.13, 2.27)1.44 (0.79, 2.62)0.97 (0.61, 1.55)2.69 (1.43, 5.06)NA0.03
Leather workers0.94 (0.65, 1.37)0.83 (0.43, 1.61)1.10 (0.69, 1.75)0.59 (0.31, 1.10)1.46 (0.78, 2.76)0.28
Meat workers1.14 (0.76, 1.70)1.53 (0.86, 2.70)1.19 (0.75, 1.89)0.85 (0.42, 1.73)1.22 (0.56, 2.65)0.84
Medical workers0.85 (0.72, 0.99)0.99 (0.79, 1.24)1.01 (0.85, 1.19)1.19 (0.93, 1.51)1.10 (0.81, 1.49)1.38 (0.95, 2.02)1.12 (0.82, 1.52)1.13 (0.71, 1.80)0.17
061 Medical doctors1.06 (0.66, 1.71)1.46 (0.79, 2.72)1.29 (0.77, 2.18)2.23 (1.17, 4.26)0.93
Metal processers1.34 (0.95, 1.90)1.14 (0.62, 2.08)0.89 (0.52, 1.51)1.32 (0.82, 2.12)1.57 (0.78, 3.14)0.92 (0.42, 1.99)0.66 (0.16, 2.74)0.35
723 Metal melters and reheaters2.31 (1.01, 5.26)NANANA0.18
Metal workers0.91 (0.76, 1.09)0.86 (0.65, 1.15)1.04 (0.84, 1.29)1.17 (0.84, 1.64)1.18 (0.93, 1.52)1.14 (0.80, 1.64)0.66 (0.45, 0.99)0.71 (0.39, 1.29)0.05
834 Machine-tool operators0.92 (0.68, 1.25)1.34 (0.81, 2.21)1.21 (0.84, 1.75)1.73 (0.93, 3.20)1.08 (0.69, 1.69)1.96 (1.04, 3.69)0.84 (0.45, 1.58)0.56
Painters1.03 (0.77, 1.39)1.22 (0.77, 1.94)1.34 (0.95, 1.89)1.27 (0.71, 2.28)0.97 (0.61, 1.55)1.31 (0.70, 2.46)1.80 (1.14, 2.84)0.12
93 Painters1.06 (0.78, 1.44)1.31 (0.81, 2.13)1.40 (0.98, 1.99)1.23 (0.66, 2.31)1.05 (0.64, 1.72)1.53 (0.77, 3.03)1.74 (1.07, 2.83)0.22
93930 Spray-painter (except construction)1.74 (0.90, 3.37)2.67 (1.36, 5.25)1.31 (0.31, 5.62)0.61
Printers0.88 (0.65, 1.19)1.36 (0.85, 2.19)1.16 (0.83, 1.61)1.02 (0.52, 2.01)1.37 (0.85, 2.22)1.27 (0.61, 2.67)0.92 (0.50, 1.70)0.38
922 Printing pressmen6.52 (2.79-15.21)NA0.02
Teachers0.88 (0.76, 1.01)0.88 (0.72, 1.08)0.95 (0.82, 1.11)0.93 (0.74, 1.17)0.99 (0.76, 1.30)1.00 (0.69, 1.43)0.94 (0.70, 1.26)1.13 (0.75, 1.70)0.79
131 University and higher education teachers0.81 (0.61, 1.07)0.89 (0.59, 1.33)0.62 (0.44, 0.89)0.72 (0.43, 1.19)0.85 (0.49, 1.47)1.03 (0.59, 1.80)0.37
134 Preprimary education teachers0.89 (0.61, 1.31)1.46 (0.76, 2.78)0.98 (0.66, 1.46)2.00 (1.04, 3.87)0.10
135 Special education teachers1.94 (1.01, 3.71)NA0.54
Textile workers1.19 (1.01, 1.41)1.20 (0.93, 1.54)0.94 (0.75, 1.17)0.85 (0.59, 1.23)1.01 (0.78, 1.30)0.93 (0.64, 1.35)1.60 (1.18, 2.17)2.18 (1.45, 3.30)0.02
75 Spinners, weavers, knitters, dyers, and related workers 1.09 (0.84, 1.42)1.08 (0.73, 1.61)0.81 (0.55, 1.18)0.73 (0.39, 1.38)1.08 (0.74, 1.56)1.09 (0.62, 1.89)1.85 (1.21, 2.83)1.90 (1.00, 3.64)0.03
79 Tailors, dressmakers, sewers, upholsterers, and related workers 1.20 (0.99, 1.47)1.23 (0.90, 1.69)1.02 (0.79, 1.31)1.03 (0.67, 1.59)0.94 (0.68, 1.30)0.86 (0.52, 1.41)1.35 (0.92, 1.99)2.29 (1.38, 3.77)0.41
793 Milliners and hatmakers2.90 (1.30, 6.45)NANANA0.62
795 Sewers and embroiderers1.51 (1.16, 1.96)1.56 (1.00, 2.42)1.01 (0.71, 1.44)1.05 (0.68, 1.63)1.09 (0.55, 2.19)1.26 (0.72, 2.21)0.20
Welders1.31 (0.99, 1.74)1.20 (0.70, 2.05)0.81 (0.53, 1.23)1.25 (0.63, 2.49)0.97 (0.59, 1.60)0.66 (0.31, 1.42)1.08 (0.39, 3.02)0.09
Wood workers1.12 (0.89, 1.41)1.22 (0.85, 1.75)0.95 (0.70, 1.29)0.97 (0.58, 1.62)1.01 (0.71, 1.43)0.95 (0.56, 1.60)1.54 (1.04, 2.27)2.04 (1.19, 3.50)0.15
811 Cabinetmakers0.72 (0.41, 1.28)0.98 (0.51, 1.86)2.41 (1.22, 4.74)0.04
95410 Carpenter, general1.14 (0.71, 1.81)1.49 (0.91, 2.44)2.10 (1.08, 4.09)0.18
Abbreviations: —, < 10 cases or < 10 controls; NA, 0 cases or controls. aResults are not presented for the following occupational groups because they included < 10 cases or < 10 controls: Pulp & paper workers, petroleum workers, and undertakers. bResults are presented for a specific occupational title within an occupational group if there was a statistically significantly increased or decreased OR for at least one subtype associated with ever employment or > 10 years employment for men and women combined; results are excluded when there were < 10 cases or < 10 controls. cAdjusted for age, sex, and study center. dQ-test for heterogeneity across the four subtypes, based on ORs for ever employment in the occupation for men and women combined.
Adjusted ORs (95% CIs) for each of four NHL subtypes by occupational title in 22 occupational groups. Positive associations were present for FL with specific occupations such as “spray-painter (except construction)” (OR = 2.67; 95% CI: 1.36, 5.25; 13 cases, 29 controls) and with > 10 years employment as a “medical doctor” (OR = 2.23, 95% CI: 1.17, 4.26; 13 cases, 38 controls). CLL/SLL was associated with ever employment in the occupational group of hairdressers (OR = 1.79; 95% CI: 1.06, 3.03; 18 cases, 130 controls), both for the specific occupation “women’s hairdresser” as well as for > 10 years employment in the occupational group of hairdressers (OR = 2.09, 95% CI: 1.01, 4.34; 10 cases, 40 controls). We observed positive associations with CLL/SLL for specific occupations such as “general farm worker” (OR = 1.44; 95% CI: 1.13, 1.84; 102 cases, 399 controls), printing pressmen (OR = 6.52; 95% CI: 2.79, 15.21; 10 cases, 19 controls), “pre-primary education teachers” (OR = 2.00; 95% CI: 1.04, 3.87; 11 cases, 111 controls) and carpenters (OR = 2.10; 95% CI: 1.08, 4.09; 13 cases, 69 controls). CLL/SLL was also associated with > 10 years employment as machine tool operators (OR = 1.96; 95% CI: 1.04, 3.69; 15 cases, 46 controls). Three occupational groups had positive associations with PTCL: ever employment as painters (OR = 1.80; 95% CI: 1.14, 2.84; 22 cases, 221 controls), textile workers (OR = 1.60; 95% CI: 1.18, 2.17; 56 cases, 773 controls), and wood workers (OR = 1.54; 95% CI: 1.04, 2.27; 31 cases, 352 controls); the last two occupational groups also had increased ORs for > 10 years employment. Specific textile occupations associated with PTCL included “spinners, weavers, knitters, dyers and related workers” (OR = 1.85; 95% CI: 1.21, 2.83; 27 cases, 313 controls) and “tailors, dressmakers, sewers, upholsterers and related workers” (> 10 year OR = 2.29, 95% CI: 1.38, 3.77, 19 cases, 183 controls). The specific wood worker occupation associated with PTCL was “cabinet makers” (OR = 2.41; 95% CI: 1.22, 4.74; 10 cases, 81 controls). PTCL was also associated with “electrical fitters” (ever employed OR = 2.02; 95% CI: 1.03, 3.97; 10 cases, 92 controls). Evidence of heterogeneity in relative risks (p < 0.05, Q-test for heterogeneity) across the four NHL subtypes was present for “women’s hairdressers,” metal workers, “printing pressmen,” textile workers, and “cabinetmakers” (Table 4). “Printing pressmen,” however, had very small numbers of cases and controls (< 10) for all analyses except for CLL/SLL. Attributable fraction. We estimated the proportion of NHL and of each subtype that was attributable to the main occupational groups (farmers, textile workers, hairdressers, wood workers, painters) or to specific occupations (e.g., “women’s hairdressers,” “spray-painters”) for which an elevated relative risk had been observed (p < 0.05). AFs for NHL were low, between 0.3% for “women’s hairdressers” and 0.63% for “general farm workers,” and were somewhat higher for the rarer individual subtypes: 1.49% for “women’s hairdressers” and CLL/SLL and ≥ 3.69% for the textile worker group and PTCL. AFs differed by sex in a number of occupations, reflecting the scarcity of men or women in a particular occupation.

Discussion

We found evidence that NHL was associated with employment as textile workers, hairdressers, and farm workers, as well as with employment as painters, printers, wood workers, metal workers, medical workers, electrical workers, and cleaners. The statistically significant heterogeneity in relative risk estimates among subtypes suggested that employment as “women’s hairdressers” was particularly associated with DLBCL and CLL/SLL and employment as textile workers with DLBCL and PTCL. Our pooled analysis used a uniform classification of NHL diagnosis and was substantially larger than any individual study. A limitation of our study is that grouping workers according to job title disregards the wide qualitative and quantitative variation in exposure that may occur for workers with the same job title (McGuire et al. 1998). Even if an association between job title and disease is found, the potentially causative agents are unknown, although they are likely to be common rather than rare exposures within the occupational group. The international nature of this study also implies that only associations for occupations with internationally comparable exposure profiles can be detected and that some misclassification will be introduced owing to the recoding of different occupational classifications into a single one. An advantage of using job titles rather than specific exposures is that recall by participants is less likely to be influenced by their disease status, making differential misclassification also less likely. The multiple comparisons of a job title–based approach, however, suggest a vulnerability to false positive findings. Results are therefore focused on the a priori–selected occupational groups (24 were eligible) extracted from earlier NHL research. We discuss below the findings from our study that are consistent with previously reported associations, and we also discuss occupational exposures that might be implicated as etiologic agents. We confirmed the previously reported association of NHL with crop farming occupations (Blair et al. 1992; Keller-Byrne et al. 1997), but not with animal farming (Amadori et al. 1995; Boffetta and de Vocht 2007; Lee et al. 2002), which was negatively associated with CLL/SLL. This finding suggests that risk estimates for all farming and all NHL combined may be uninformative and that future studies will need to consider both NHL subtype and farming type to identify the possible specific farming exposures that may be involved in these associations. The observed associations for hairdressers were stronger for women’s hairdressers than for other job titles within this occupational category, supporting a hypothesis of hair dye or other hair treatments more commonly used by women than by men or children as possible causes. Associations were present for DLBCL and CLL/SLL but were absent for FL. A previous pooled analysis of InterLymph studies reported associations with personal hair dye use for NHL subtypes FL and CLL/SLL (Zhang et al. 2008). Exposure from personal hair dye use is, however, not strictly comparable to the exposure experienced by hairdressers because hairdressers are exposed on a daily basis to a range of other compounds such as solvents and propellant gases, including dichloromethane and chlorofluorocarbons. The observed associations between textile-related occupations and NHL (DLBCL and PTCL) suggest a range of possible exposures that can occur in this environment, but the implication of multiple specific occupations within this group, which is involved in both fabric making and garment making, indicates that associations were not restricted to specific tasks in the textile industry (e.g., textile dyeing) but rather may be associated with more ubiquitous exposures (Siemiatycki et al. 1986). We found associations with NHL for a number of other occupations potentially exposed to solvents. Among these occupations were cleaners, painters (especially spray-painters) with potential for exposure to solvents in paints and paint strippers, and machine tool operators, who may be exposed to a range of solvents including aliphatic hydrocarbon solvents, aromatic hydrocarbon solvents, chlorinated solvents, mineral oils, and diesel fuel and exhaust. Metal workers would also be exposed to metal dust and metal-working fluids. Although our findings of positive associations for these occupations may support a role for solvent exposure as a risk factor for NHL, other exposures may also be responsible. Some solvent exposure would likely be implicated in two other occupational groups for which we observed an association with NHL: several specific occupations within the electrical and electronics–related group may also have exposure to electromagnetic fields (Mester et al. 2006), and carpenters may be exposed to wood dust, wood preservatives, formaldehyde, and molds in addition to solvents. Forestry workers could also be exposed to wood dust and potentially to pesticides and engine exhausts. All teaching occupations combined were inversely associated with NHL, a finding that is the opposite of the results of a death certificate–based case–control study (Figgs et al. 1995) and a meta-analysis (Baker et al. 1999). We did observe a marked positive association for preprimary education teachers with CLL/SLL, which could point towards common childhood infections as a possible causal factor (Vineis et al. 2000). Long-term employment as a medical doctor, in which infectious agents may also play a role, was associated with FL. Among the four NHL subtypes, the statistically significant heterogeneity in relative risk estimates suggested that “women’s hairdressers” were at an increased risk for DLBCL and CLL/SLL, but not for FL, which was previously suggested to be associated with personal hair dye use (Zhang et al. 2008; Sangrajrang et al. 2011). Textile workers were another occupational group to show heterogeneity across NHL subtypes and were particularly at risk for DLBCL and PTCL. There was no significant heterogeneity in ORs for crop and mixed/unspecified farming among the four subtypes, although DLBCL and CLL/SLL appeared to be most strongly associated with farming occupations. We note the strong association between spray-painters and FL as well as the lack of adequate numbers for analysis in the other subtypes examined. The authors of a recent major analysis of NHL subtypes and a broad range of risk factors in the InterLymph consortium reported that certain occupations were associated with one or more subtypes, including spray-painters (FL), crop farmers (DLBCL, CLL/SLL), hairdressers (DLBCL, CLL/SLL), and medical doctors (FL). These analyses were adjusted for all other significant risk factors (Morton et al. 2014) and are consistent with our findings. However, our analysis based on occupational titles is not the proper setting in which to explore whether socioeconomic confounders for which we were unable to control might have generated some of our positive findings; such hypotheses need to be specifically addressed in dedicated analyses.

Conclusions

This pooled analysis supports a role for textile-, hairdressing-, and farming-related exposures in the development of NHL. Additional occupations associated with NHL or NHL subtypes include cleaners, painters, printers, and wood workers. The results by sex indicate that occupational exposures may play a role in NHL for both women and men, but the specific occupations involved differ between the sexes. The large numbers of participants and the application of standard NHL and occupational classification systems allowed us to make estimates of relative risk by NHL subtype, forming an important step towards improving our understanding of NHL etiology. The findings of the present study can be further refined at the next stage, after specific exposures are identified in detailed exposure studies.
  83 in total

1.  Non-Hodgkin's lymphoma and occupational exposure.

Authors:  P A Scherr; G B Hutchison; R S Neiman
Journal:  Cancer Res       Date:  1992-10-01       Impact factor: 12.701

2.  Mortality of U.S. embalmers and funeral directors.

Authors:  R B Hayes; A Blair; P A Stewart; R F Herrick; H Mahar
Journal:  Am J Ind Med       Date:  1990       Impact factor: 2.214

3.  non-Hodgkin's lymphoma and occupation in Sweden: a registry based analysis.

Authors:  M S Linet; H S Malker; J K McLaughlin; J A Weiner; W J Blot; J L Ericsson; J F Fraumeni
Journal:  Br J Ind Med       Date:  1993-01

4.  Cancer mortality in the U.S. flour industry.

Authors:  M C Alavanja; A Blair; M N Masters
Journal:  J Natl Cancer Inst       Date:  1990-05-16       Impact factor: 13.506

5.  Non-Hodgkin's lymphoma and occupation in Denmark.

Authors:  T Skov; E Lynge
Journal:  Scand J Soc Med       Date:  1991-09

6.  Some occupational exposures as risk factors for malignant lymphomas.

Authors:  B Persson; M Fredriksson; K Olsen; B Boeryd; O Axelson
Journal:  Cancer       Date:  1993-09-01       Impact factor: 6.860

7.  Malignant lymphoproliferative diseases in occupations with potential exposure to phenoxyacetic acids or dioxins: a register-based study.

Authors:  M Eriksson; L Hardell; H Malker; J Weiner
Journal:  Am J Ind Med       Date:  1992       Impact factor: 2.214

8.  Evaluation of risks for non-Hodgkin's lymphoma by occupation and industry exposures from a case-control study.

Authors:  A Blair; A Linos; P A Stewart; L F Burmeister; R Gibson; G Everett; L Schuman; K P Cantor
Journal:  Am J Ind Med       Date:  1993-02       Impact factor: 2.214

9.  Cancer incidence among Massachusetts firefighters, 1982-1986.

Authors:  S R Sama; T R Martin; L K Davis; D Kriebel
Journal:  Am J Ind Med       Date:  1990       Impact factor: 2.214

10.  Clues to cancer etiology from studies of farmers.

Authors:  A Blair; S H Zahm; N E Pearce; E F Heineman; J F Fraumeni
Journal:  Scand J Work Environ Health       Date:  1992-08       Impact factor: 5.024

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  10 in total

1.  Identifying risk factors for B-cell lymphoma.

Authors:  Christopher R Flowers; Christine F Skibola
Journal:  Blood       Date:  2016-01-07       Impact factor: 22.113

2.  Analysis of 153 115 patients with hematological malignancies refines the spectrum of familial risk.

Authors:  Amit Sud; Subhayan Chattopadhyay; Hauke Thomsen; Kristina Sundquist; Jan Sundquist; Richard S Houlston; Kari Hemminki
Journal:  Blood       Date:  2019-08-08       Impact factor: 22.113

Review 3.  Epidemiology of Follicular Lymphoma.

Authors:  James R Cerhan
Journal:  Hematol Oncol Clin North Am       Date:  2020-05-05       Impact factor: 3.722

4.  Cancer incidence in the AGRICAN cohort study (2005-2011).

Authors:  Clémentine Lemarchand; Séverine Tual; Noémie Levêque-Morlais; Stéphanie Perrier; Aurélien Belot; Michel Velten; Anne-Valérie Guizard; Elisabeth Marcotullio; Alain Monnereau; Bénédicte Clin; Isabelle Baldi; Pierre Lebailly
Journal:  Cancer Epidemiol       Date:  2017-07-11       Impact factor: 2.984

5.  Comparison of cancer incidence in Australian farm residents 45 years and over, compared to rural non-farm and urban residents - a data linkage study.

Authors:  Julie Depczynski; Timothy Dobbins; Bruce Armstrong; Tony Lower
Journal:  BMC Cancer       Date:  2018-01-05       Impact factor: 4.430

6.  Risk of lymphoma subtypes by occupational exposure in Southern Italy.

Authors:  Giuseppe Ingravallo; Chiara Monica Guastadisegno; Maria Luisa Congedo; Gianfranco Lagioia; Maria Cristina Loparco; Annamaria Giordano; Tommasina Perrone; Francesco Gaudio; Caterina Spinosa; Carla Minoia; Lucia D'Onghia; Michela Strusi; Vincenzo Corrado; Domenica Cavone; Luigi Vimercati; Nunzia Schiavulli; Giovanni Maria Ferri; Giorgina Specchia; Patrizio Mazza; Graziana Intranuovo; Pierluigi Cocco
Journal:  J Occup Med Toxicol       Date:  2017-11-23       Impact factor: 2.646

7.  Peripheral blood DNA methylation profiles predict future development of B-cell Non-Hodgkin Lymphoma.

Authors:  Almudena Espín-Pérez; Kevin Brennan; Asiri Saumya Ediriwickrema; Olivier Gevaert; Izidore S Lossos; Andrew J Gentles
Journal:  NPJ Precis Oncol       Date:  2022-07-21

8.  Association of Cancer Incidence and Duration of Residence in Geothermal Heating Area in Iceland: An Extended Follow-Up.

Authors:  Adalbjorg Kristbjornsdottir; Thor Aspelund; Vilhjalmur Rafnsson
Journal:  PLoS One       Date:  2016-05-20       Impact factor: 3.240

9.  Disparities by race, age, and sex in the improvement of survival for lymphoma: Findings from a population-based study.

Authors:  Fahad Mukhtar; Paolo Boffetta; Bashir Dabo; Jong Y Park; Chi T D Tran; Thuan V Tran; Huong Thi-Thanh Tran; Madison Whitney; Harvey A Risch; Linh C Le; Wei Zheng; Xiao-Ou Shu; Hung N Luu
Journal:  PLoS One       Date:  2018-07-11       Impact factor: 3.240

10.  Occupational exposure to organic dust and risk of lymphoma subtypes in the EPILYMPH case-control study.

Authors:  Pierluigi Cocco; Giannina Satta; Federico Meloni; Ilaria Pilia; Fahad Ahmed; Nikolaus Becker; Delphine Casabonne; Silvia de Sanjosé; Lenka Foretova; Marc Maynadié; Alexandra Nieters; Anthony Staines; Andrea 't Mannetje; Mariagrazia Zucca; Maria Grazia Ennas; Marcello Campagna; Sara De Matteis; Yolanda Benavente
Journal:  Scand J Work Environ Health       Date:  2020-09-25       Impact factor: 5.024

  10 in total

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